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I was wondering if there was anything like the subset function, but for assignment rather than extraction. Often I'll need to do something like

rows <- # some condition
df$x[rows] <- with(df[rows, ], {
    # operation 1...
df$y[rows] <- with(df[rows, ], {
    # operation 2...

And it seems to me that it would be nice to be able to write

subset(df, rows, c(x, y)) <- (some expression combining operations 1 and 2)

Is there anything like this out there?

EDIT: Some background. In SAS, one can write data processing code like

if /* condition */ then do;
    x = ...; y = ...; z = ...;
else if /* some other condition */ then do;
    x = ...; y = ...; z = ...;
else if /* etcetera */

I'm basically looking for the easiest/most elegant way to replicate this in R. The direct translation would involve a for loop over all rows in the data frame, and obviously I'd rather not do that.

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how are your rows selected, based on some criteria? do you always only have 2 operations? if so ifelse() in something like sapply() might get you there –  nzcoops Oct 17 '11 at 6:55
Ideally it would be completely general, so that I could specify some expression for subsetting the rows, like with subset; and I could allow multiple columns to be assigned to. –  Hong Ooi Oct 17 '11 at 7:00

2 Answers 2

Remember that subset is only the sugar on top. As such, why not use 'basic' subsetting as provided by [:

df[rows, c("x", "y")]<-with(df[rows,], {...})

Does that cut it for you?

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Partially; I'd like to be able to do without the temporary rows variable. I'm basically trying to replicate SAS's procedural if-then-else syntax for data steps in an elegant way. –  Hong Ooi Oct 17 '11 at 7:39

Regarding the SAS-ish processing, if the order of the rows is not relevant:

  1. Add a column to your data.frame that holds the different cases as a factor. You could e.g. use an ifelse for this, but depending on the conditions, there may be better ways. I'll assume this column is now named "proctype"
  2. Load plyr, and use ddply something akin to:

    ddply(df, .(proctype), function(curdf){
        #you can use with/within here with curdf
        curproctype <- curdf$proctype[1]
        switch(curproctype, #note: may be easier to just use an if here
           nameoffirstproctypelevel = firstkindofprocessing(curdf),
           nameofsecondproctypelevel = secondkindofprocessing(curdf))
share|improve this answer
Also note: nothing to stop you from writing a simple loop, which is essentially what SAS does behind the scene... –  Nick Sabbe Oct 17 '11 at 9:14

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